Reduced-cost construction of Jacobian matrices for high-resolution inversions of satellite observations of atmospheric composition

<p>Global high-resolution observations of atmospheric composition from satellites can greatly improve our understanding of surface emissions through inverse analyses. Variational inverse methods can optimize surface emissions at any resolution but do not readily quantify the error and informat...

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Main Authors: H. Nesser, D. J. Jacob, J. D. Maasakkers, T. R. Scarpelli, M. P. Sulprizio, Y. Zhang, C. H. Rycroft
Format: Article
Language:English
Published: Copernicus Publications 2021-08-01
Series:Atmospheric Measurement Techniques
Online Access:https://amt.copernicus.org/articles/14/5521/2021/amt-14-5521-2021.pdf
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spelling doaj-aaaefce3396b4b1db22c8f711ffc92202021-08-12T12:07:09ZengCopernicus PublicationsAtmospheric Measurement Techniques1867-13811867-85482021-08-01145521553410.5194/amt-14-5521-2021Reduced-cost construction of Jacobian matrices for high-resolution inversions of satellite observations of atmospheric compositionH. Nesser0D. J. Jacob1J. D. Maasakkers2T. R. Scarpelli3M. P. Sulprizio4Y. Zhang5Y. Zhang6C. H. Rycroft7School of Engineering and Applied Sciences, Harvard University, Cambridge, MA, USASchool of Engineering and Applied Sciences, Harvard University, Cambridge, MA, USASRON Netherlands Institute for Space Research, Utrecht, the NetherlandsDepartment of Earth and Planetary Sciences, Harvard University, Cambridge, MA, USASchool of Engineering and Applied Sciences, Harvard University, Cambridge, MA, USAKey Laboratory of Coastal Environment and Resources of Zhejiang Province, School of Engineering, Westlake University, Hangzhou, Zhejiang, ChinaInstitute of Advanced Technology, Westlake Institute for Advanced Study, Hangzhou, Zhejiang, ChinaSchool of Engineering and Applied Sciences, Harvard University, Cambridge, MA, USA<p>Global high-resolution observations of atmospheric composition from satellites can greatly improve our understanding of surface emissions through inverse analyses. Variational inverse methods can optimize surface emissions at any resolution but do not readily quantify the error and information content of the posterior solution. The information content of satellite data may be much lower than its coverage would suggest because of failed retrievals, instrument noise, and error correlations that propagate through the inversion. Analytical solution of the inverse problem provides closed-form characterization of posterior error statistics and information content but requires the construction of the Jacobian matrix that relates emissions to atmospheric concentrations. Building the Jacobian matrix is computationally expensive at high resolution because it involves perturbing each emission element, typically individual grid cells, in the atmospheric transport model used as the forward model for the inversion. We propose and analyze two methods, reduced dimension and reduced rank, to construct the Jacobian matrix at greatly decreased computational cost while retaining information content. Both methods are two-step iterative procedures that begin from an initial native-resolution estimate of the Jacobian matrix constructed at no computational cost by assuming that atmospheric concentrations are most sensitive to local emissions. The reduced-dimension method uses this estimate to construct a Jacobian matrix on a multiscale grid that maintains a high resolution in areas with high information content and aggregates grid cells elsewhere. The reduced-rank method constructs the Jacobian matrix at native resolution by perturbing the leading patterns of information content given by the initial estimate. We demonstrate both methods in an analytical Bayesian inversion of Greenhouse Gases Observing Satellite (GOSAT) methane data with augmented information content over North America in July 2009. We show that both methods reproduce the results of the native-resolution inversion while achieving a factor of 4 improvement in computational performance. The reduced-dimension method produces an exact solution at a lower spatial resolution, while the reduced-rank method solves the inversion at native resolution in areas of high information content and defaults to the prior estimate elsewhere.</p>https://amt.copernicus.org/articles/14/5521/2021/amt-14-5521-2021.pdf
collection DOAJ
language English
format Article
sources DOAJ
author H. Nesser
D. J. Jacob
J. D. Maasakkers
T. R. Scarpelli
M. P. Sulprizio
Y. Zhang
Y. Zhang
C. H. Rycroft
spellingShingle H. Nesser
D. J. Jacob
J. D. Maasakkers
T. R. Scarpelli
M. P. Sulprizio
Y. Zhang
Y. Zhang
C. H. Rycroft
Reduced-cost construction of Jacobian matrices for high-resolution inversions of satellite observations of atmospheric composition
Atmospheric Measurement Techniques
author_facet H. Nesser
D. J. Jacob
J. D. Maasakkers
T. R. Scarpelli
M. P. Sulprizio
Y. Zhang
Y. Zhang
C. H. Rycroft
author_sort H. Nesser
title Reduced-cost construction of Jacobian matrices for high-resolution inversions of satellite observations of atmospheric composition
title_short Reduced-cost construction of Jacobian matrices for high-resolution inversions of satellite observations of atmospheric composition
title_full Reduced-cost construction of Jacobian matrices for high-resolution inversions of satellite observations of atmospheric composition
title_fullStr Reduced-cost construction of Jacobian matrices for high-resolution inversions of satellite observations of atmospheric composition
title_full_unstemmed Reduced-cost construction of Jacobian matrices for high-resolution inversions of satellite observations of atmospheric composition
title_sort reduced-cost construction of jacobian matrices for high-resolution inversions of satellite observations of atmospheric composition
publisher Copernicus Publications
series Atmospheric Measurement Techniques
issn 1867-1381
1867-8548
publishDate 2021-08-01
description <p>Global high-resolution observations of atmospheric composition from satellites can greatly improve our understanding of surface emissions through inverse analyses. Variational inverse methods can optimize surface emissions at any resolution but do not readily quantify the error and information content of the posterior solution. The information content of satellite data may be much lower than its coverage would suggest because of failed retrievals, instrument noise, and error correlations that propagate through the inversion. Analytical solution of the inverse problem provides closed-form characterization of posterior error statistics and information content but requires the construction of the Jacobian matrix that relates emissions to atmospheric concentrations. Building the Jacobian matrix is computationally expensive at high resolution because it involves perturbing each emission element, typically individual grid cells, in the atmospheric transport model used as the forward model for the inversion. We propose and analyze two methods, reduced dimension and reduced rank, to construct the Jacobian matrix at greatly decreased computational cost while retaining information content. Both methods are two-step iterative procedures that begin from an initial native-resolution estimate of the Jacobian matrix constructed at no computational cost by assuming that atmospheric concentrations are most sensitive to local emissions. The reduced-dimension method uses this estimate to construct a Jacobian matrix on a multiscale grid that maintains a high resolution in areas with high information content and aggregates grid cells elsewhere. The reduced-rank method constructs the Jacobian matrix at native resolution by perturbing the leading patterns of information content given by the initial estimate. We demonstrate both methods in an analytical Bayesian inversion of Greenhouse Gases Observing Satellite (GOSAT) methane data with augmented information content over North America in July 2009. We show that both methods reproduce the results of the native-resolution inversion while achieving a factor of 4 improvement in computational performance. The reduced-dimension method produces an exact solution at a lower spatial resolution, while the reduced-rank method solves the inversion at native resolution in areas of high information content and defaults to the prior estimate elsewhere.</p>
url https://amt.copernicus.org/articles/14/5521/2021/amt-14-5521-2021.pdf
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